Label-efficient deep semantic segmentation of intracranial hemorrhages in CT-scans.

Antoine Spahr, Jennifer Ståhle, Chunliang Wang, Magnus Kaijser
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Abstract

Intracranial hemorrhage (ICH) is a common finding in traumatic brain injury (TBI) and computed tomography (CT) is considered the gold standard for diagnosis. Automated detection of ICH provides clinical value in diagnostics and in the ability to feed robust quantification measures into future prediction models. Several studies have explored ICH detection and segmentation but the research process is somewhat hindered due to a lack of open large and labeled datasets, making validation and comparison almost impossible. The complexity of the task is further challenged by the heterogeneity of ICH patterns, requiring a large number of labeled data to train robust and reliable models. Consequently, due to the labeling cost, there is a need for label-efficient algorithms that can exploit easily available unlabeled or weakly-labeled data. Our aims for this study were to evaluate whether transfer learning can improve ICH segmentation performance and to compare a variety of transfer learning approaches that harness unlabeled and weakly-labeled data. Three self-supervised and three weakly-supervised transfer learning approaches were explored. To be used in our comparisons, we also manually labeled a dataset of 51 CT scans. We demonstrate that transfer learning improves ICH segmentation performance on both datasets. Unlike most studies on ICH segmentation our work relies exclusively on publicly available datasets, allowing for easy comparison of performances in future studies. To further promote comparison between studies, we also present a new public dataset of ICH-labeled CT scans, Seq-CQ500.

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ct扫描颅内出血的标记高效深度语义分割。
颅内出血(ICH)是外伤性脑损伤(TBI)的常见发现,计算机断层扫描(CT)被认为是诊断的金标准。脑出血的自动检测为诊断提供了临床价值,并为未来的预测模型提供了可靠的量化措施。一些研究已经探索了ICH的检测和分割,但由于缺乏开放的大型和标记的数据集,研究过程在一定程度上受到阻碍,使得验证和比较几乎不可能。ICH模式的异质性进一步挑战了任务的复杂性,这需要大量标记数据来训练稳健可靠的模型。因此,由于标签成本,需要标签高效的算法,可以利用容易获得的未标记或弱标记数据。本研究的目的是评估迁移学习是否可以提高ICH分割性能,并比较利用未标记和弱标记数据的各种迁移学习方法。研究了三种自监督和三种弱监督迁移学习方法。为了在我们的比较中使用,我们还手动标记了51个CT扫描数据集。我们证明了迁移学习在两个数据集上都提高了ICH分割性能。与大多数关于ICH分割的研究不同,我们的工作完全依赖于公开可用的数据集,允许在未来的研究中轻松比较性能。为了进一步促进研究之间的比较,我们还提出了一个新的ich标记CT扫描公共数据集Seq-CQ500。
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